Combining Diversity Queries and Visual Mining to Improve Content-Based Image Retrieval Systems: The DiVI Method

Lúcio F. D. Santos, Rafael L. Dias, M. X. Ribeiro, A. Traina, C. Traina
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引用次数: 7

Abstract

This paper proposes a new approach to improve similarity queries with diversity, the Diversity and Visually-Interactive method (DiVI), which employs Visual Data Mining techniques in Content-Based Image Retrieval (CBIR) systems. DiVI empowers the user to understand how the measures of similarity and diversity affect their queries, as well as increases the relevance of CBIR results according to the user judgment. An overview of the image distribution in the database is shown to the user through multidimensional projection. The user interacts with the visual representation changing the projected space or the query parameters, according to his/her needs and previous knowledge. DiVI takes advantage of the users' activity to transparently reduce the semantic gap faced by CBIR systems. Empirical evaluation show that DiVI increases the precision for querying by content and also increases the applicability and acceptance of similarity with diversity in CBIR systems.
结合多样性查询和视觉挖掘改进基于内容的图像检索系统:DiVI方法
本文提出了一种改进相似性查询多样性的新方法——多样性和视觉交互方法(DiVI),该方法将视觉数据挖掘技术应用于基于内容的图像检索(CBIR)系统中。DiVI使用户能够理解相似性和多样性的度量如何影响他们的查询,并根据用户的判断增加了CBIR结果的相关性。通过多维投影向用户显示数据库中图像分布的概况。用户根据自己的需要和以前的知识,与可视化表示进行交互,改变投影空间或查询参数。DiVI利用用户的活动来透明地减少CBIR系统面临的语义差距。实证评价表明,DiVI提高了按内容查询的精度,也提高了相似性与多样性在CBIR系统中的适用性和接受度。
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